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Sensor-Fusion in Spiking Neural Network that Generates Autonomous Behavior in Real Mobile Robot

机译:传感器融合在尖刺神经网络中,在真正的移动机器人中产生自主行为

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We here introduce a novel adaptive controller for autonomous mobile robot that binds N types of sensory information. For each sensory modality, sensory-motor connection is made by a three-layered spiking neural network (SNN). The synaptic weights in the model have the property of spike timing-dependent plasticity (STDP) and regulated by presynaptic modulation signal from the sensory neurons. Each synaptic weight is incrementally adapted depending upon the firing rate of the presynaptic modulation signal and that of the hidden-layer neuron(s). Information from different types of sensors are bound at the motor neurons. A real mobile robot Khepera with the SNN controller quickly adapted into an open environment and performed the desired task successfully. This approach could be applicable to a robot with inputs of various sensory modalities and various types of motor outputs.
机译:我们在这里介绍了一种新型自适应控制器,用于自主移动机器人绑定N种类的感官信息。对于每个感官模态,感觉电动机连接由三层尖峰神经网络(SNN)制成。模型中的突触权重具有尖峰时序依赖性塑性(STDP)的性质,并由来自感官神经元的突触前调节信号调节。每个突触重量根据突触前调制信号的射击率和隐藏层神经元的烧制率递增地进行。来自不同类型传感器的信息在电机神经元束缚。具有SNN控制器的真正移动机器人Khepera快速调整为开放环境,并成功执行了所需的任务。这种方法可以适用于具有各种感官模态的输入和各种类型的电动机输出的机器人。

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